Prediction of Ultimate Load of Rectangular CFST Columns Using Interpretable Machine Learning Method

Volume: 2020, Pages: 1 - 16
Published: Dec 24, 2020
Abstract
The ultimate compressive load of concrete-filled steel tubular (CFST) structural members is recognized as one of the most important engineering parameters for the design of such composite structures. Therefore, this paper deals with the prediction of ultimate load of rectangular CFST structural members using the adaptive neurofuzzy inference system (ANFIS) surrogate model. To this end, compression test data on CFST members were extracted from...
Paper Details
Title
Prediction of Ultimate Load of Rectangular CFST Columns Using Interpretable Machine Learning Method
Published Date
Dec 24, 2020
Volume
2020
Pages
1 - 16
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